A new information processing method, an artificial neural net, was applied to characterise the variability of anthropological features of the human nasal skeleton. The aim was to find different types of nasal skeletons. A neural net with 15*15 nodes was trained by 17 standard anthropological parameters taken from 184 skulls of the Aachen collection. The trained neural net delivers its classification in a two-dimensional map. Different types of noses were locally separated within the map. Rare and frequent types may be distinguished after one passage of the complete collection through the net. Statistical descriptive analysis, hierarchical cluster analysis, and discriminant analysis were applied to the same data set. These parallel applications allowed comparison of the new approach to the more traditional ones. In general the classification by the neural net is in correspondence with cluster analysis and discriminant analysis. However, it goes beyond these classifications because of the possibility of differentiating the types in multi-dimensional dependencies. Furthermore, places in the map are kept blank for intermediate forms, which may be theoretically expected, but were not included in the training set. In conclusion, the application of a neural network is a suitable method for investigating large collections of biological material. The gained classification may be helpful in anatomy and anthropology as well as in forensic medicine. It may be used to characterise the peculiarity of a whole set as well as to find particular cases within the set.
[1]
A.Brigitte Demes,et al.
Anthropologie. Handbuch der vergleichenden biologie des menschen
,
1991
.
[2]
Heinrich Niemann,et al.
Klassifikation von Mustern
,
1983
.
[3]
Rolf Eckmiller,et al.
Neuronale Nezte, ein Beispiel für die interdisziplinäre Forschung
,
1990,
Forum Wissenschaft und Technik.
[4]
Teuvo Kohonen,et al.
Self-Organizing Maps
,
2010
.
[5]
Brian Everitt,et al.
Cluster analysis
,
1974
.
[6]
Peter J. Rousseeuw,et al.
Finding Groups in Data: An Introduction to Cluster Analysis
,
1990
.
[7]
Teuvo Kohonen,et al.
Self-Organization and Associative Memory
,
1988
.
[8]
Hans-Jürgen Friemel,et al.
Forum '90 Wissenschaft und Technik, Neue Anwendungen mit Hilfe aktueller Computer-Technologien, Trier 8./9. Oktober 1990, Proceedings
,
1990,
Forum Wissenschaft und Technik.